I am working with GPS data (latitude, longitude). For density based clustering I have used DBSCAN in R.
Advantages of DBSCAN in my case:
- I don't have to predefine numbers of clusters
I can calculate a distance matrix (using Haversine Distance Formula) and use that as input in dbscan
library(fossil) dist<- earth.dist(df, dist=T) #df is dataset containing lat long values library(fpc) dens<-dbscan(dist,MinPts=25,eps=0.43,method="dist")
Now, when I look at the clusters, they are not meaningful. Some clusters have points which are more than 1km apart. I want dense clusters but not that big in size.
Different values of
MinPts and eps are taken care of and I have also used k nearest neighbor distance graph to get an optimum value of
dbscan is doing is going to every point in my dataset and if point p has
MinPts in its
eps neighborhood it will make a cluster but at the same time it is also joining the clusters which are density reachable (which I guess are creating a problem for me).
It really is a big question, particularly "how to reduce size of a cluster without affecting its information too much", but I will write it down as the following points:
- How to remove border points in a cluster? I know which points are in
which cluster using
dens$cluster, but how would I know if a particular point is core or border?
- Is cluster 0 always noise?
- I was under the impression that the size of a cluster would be
eps. But that's not the case because density reachable clusters are combined together.
- Is there any other clustering method which has the advantage of
dbscanbut can give me more meaningful clusters?
OPTICS is another alternative but will it solve my issue?
Note: By meaningful I want to say closer points should be in a cluster. But points which are 1km or more apart should not be in the same cluster.